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Machine Learning & Artificial Intelligence | Data Science Free Courses

Machine Learning & Artificial Intelligence | Data Science Free Courses

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Perfect channel to learn Data Analytics, Data Sciene, Machine Learning & Artificial Intelligence Admin: @coderfun

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تُعد قناة Machine Learning & Artificial Intelligence | Data Science Free Courses (@datasciencefree) في القطاع اللغوي الإنكليزية لاعباً نشطاً. يضم المجتمع حالياً 66 752 مشتركاً، محتلاً المرتبة 2 450 في فئة التعليم والمرتبة 436 في منطقة ماليزيا.

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منذ تأسيسه في невідомо، حقق المشروع نمواً سريعاً وجمع 66 752 مشتركاً.

بحسب آخر البيانات بتاريخ 24 يونيو, 2026، تحافظ القناة على نشاط مستقر. خلال آخر 30 يوماً تغيّر عدد الأعضاء بمقدار 534، وفي آخر 24 ساعة بمقدار 42، مع بقاء الوصول العام مرتفعاً.

  • حالة التحقق: غير موثّقة
  • معدل التفاعل (ER): يبلغ متوسط تفاعل الجمهور 0.75‎%. وخلال أول 24 ساعة من النشر يحصد المحتوى عادةً 0.79‎% من ردود الفعل نسبةً إلى إجمالي المشتركين.
  • وصول المنشورات: يحصل كل منشور على متوسط 502 مشاهدة. وخلال اليوم الأول يجمع عادةً 524 مشاهدة.
  • التفاعلات والاستجابة: يتفاعل الجمهور بانتظام؛ متوسط التفاعلات لكل منشور يبلغ 3.
  • الاهتمامات الموضوعية: يركز المحتوى على مواضيع رئيسية مثل sellerflash, waybienad, pricing, buybox, buyer.

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Perfect channel to learn Data Analytics, Data Sciene, Machine Learning & Artificial Intelligence Admin: @coderfun

بفضل وتيرة التحديث المرتفعة (أحدث البيانات بتاريخ 25 يونيو, 2026) تحافظ القناة على حداثتها ومستوى وصول مرتفع. وتُظهر التحليلات تفاعلاً نشطاً من الجمهور، ما يجعلها نقطة تأثير مهمة ضمن فئة التعليم.

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Hypothesis Testing
Hypothesis Testing

Data Science & Analytics Community 👇👇 https://t.me/Kaggle_Group

Complete Roadmap to Learn Data Science in 2 months 👇👇 https://t.me/free4unow_backup/805

Choosing a right parametric test
Choosing a right parametric test

⚡️ Big ML cheat sheet Here you will find the basic theory of Machine Learning and examples of the implementation of specific
+4
⚡️ Big ML cheat sheet Here you will find the basic theory of Machine Learning and examples of the implementation of specific ML algorithms - in general, this is just the thing to brush up on your knowledge before the interview. 📎 Crib

Important Pandas & Spark Commands for Data Science
Important Pandas & Spark Commands for Data Science

Data Science BLOG-A-THON 🤩 In-Office Internship @ GeeksforGeeks ❤ Start writing articles & get PAID All details here 🔗 http
Data Science BLOG-A-THON 🤩 In-Office Internship @ GeeksforGeeks ❤ Start writing articles & get PAID All details here 🔗 https://bit.ly/3wCoxVf WFH Internship & GFG Goodies 👜😎

Resume key words for data scientist role explained in points: 1. Data Analysis: - Proficient in extracting, cleaning, and analyzing data to derive insights. - Skilled in using statistical methods and machine learning algorithms for data analysis. - Experience with tools such as Python, R, or SQL for data manipulation and analysis. 2. Machine Learning: - Strong understanding of machine learning techniques such as regression, classification, clustering, and neural networks. - Experience in model development, evaluation, and deployment. - Familiarity with libraries like TensorFlow, scikit-learn, or PyTorch for implementing machine learning models. 3. Data Visualization: - Ability to present complex data in a clear and understandable manner through visualizations. - Proficiency in tools like Matplotlib, Seaborn, or Tableau for creating insightful graphs and charts. - Understanding of best practices in data visualization for effective communication of findings. 4. Big Data: - Experience working with large datasets using technologies like Hadoop, Spark, or Apache Flink. - Knowledge of distributed computing principles and tools for processing and analyzing big data. - Ability to optimize algorithms and processes for scalability and performance. 5. Problem-Solving: - Strong analytical and problem-solving skills to tackle complex data-related challenges. - Ability to formulate hypotheses, design experiments, and iterate on solutions. - Aptitude for identifying opportunities for leveraging data to drive business outcomes and decision-making. Resume key words for a data analyst role 1. SQL (Structured Query Language): - SQL is a programming language used for managing and querying relational databases. - Data analysts often use SQL to extract, manipulate, and analyze data stored in databases, making it a fundamental skill for the role. 2. Python/R: - Python and R are popular programming languages used for data analysis and statistical computing. - Proficiency in Python or R allows data analysts to perform various tasks such as data cleaning, modeling, visualization, and machine learning. 3. Data Visualization: - Data visualization involves presenting data in graphical or visual formats to communicate insights effectively. - Data analysts use tools like Tableau, Power BI, or Python libraries like Matplotlib and Seaborn to create visualizations that help stakeholders understand complex data patterns and trends. 4. Statistical Analysis: - Statistical analysis involves applying statistical methods to analyze and interpret data. - Data analysts use statistical techniques to uncover relationships, trends, and patterns in data, providing valuable insights for decision-making. 5. Data-driven Decision Making: - Data-driven decision making is the process of making decisions based on data analysis and evidence rather than intuition or gut feelings. - Data analysts play a crucial role in helping organizations make informed decisions by analyzing data and providing actionable insights that drive business strategies and operations. Data Science Interview Resources 👇👇 https://topmate.io/coding/914624 Like for more 😄

Supervised_Machine_Learning_for_Text_Analysis_in_R_Emil_Hvitfeldt.pdf16.14 MB

HOW A FREELANCER USES AI TECHNOLOGY IN THEIR FIELD 👇👇 https://t.me/aijobss/8

Difference between linear regression and logistic regression 👇👇 Linear regression and logistic regression are both types of statistical models used for prediction and modeling, but they have different purposes and applications. Linear regression is used to model the relationship between a dependent variable and one or more independent variables. It is used when the dependent variable is continuous and can take any value within a range. The goal of linear regression is to find the best-fitting line that describes the relationship between the independent and dependent variables. Logistic regression, on the other hand, is used when the dependent variable is binary or categorical. It is used to model the probability of a certain event occurring based on one or more independent variables. The output of logistic regression is a probability value between 0 and 1, which can be interpreted as the likelihood of the event happening. Data Science Interview Resources 👇👇 https://topmate.io/coding/914624 Like for more 😄

Important questions to ace your machine learning interview with an approach to answer: 1. Machine Learning Project Lifecycle:    - Define the problem    - Gather and preprocess data    - Choose a model and train it    - Evaluate model performance    - Tune and optimize the model    - Deploy and maintain the model 2. Supervised vs Unsupervised Learning:    - Supervised Learning: Uses labeled data for training (e.g., predicting house prices from features).    - Unsupervised Learning: Uses unlabeled data to find patterns or groupings (e.g., clustering customer segments). 3. Evaluation Metrics for Regression:    - Mean Absolute Error (MAE)    - Mean Squared Error (MSE)    - Root Mean Squared Error (RMSE)    - R-squared (coefficient of determination) 4. Overfitting and Prevention:    - Overfitting: Model learns the noise instead of the underlying pattern.    - Prevention: Use simpler models, cross-validation, regularization. 5. Bias-Variance Tradeoff:    - Balancing error due to bias (underfitting) and variance (overfitting) to find an optimal model complexity. 6. Cross-Validation:    - Technique to assess model performance by splitting data into multiple subsets for training and validation. 7. Feature Selection Techniques:    - Filter methods (e.g., correlation analysis)    - Wrapper methods (e.g., recursive feature elimination)    - Embedded methods (e.g., Lasso regularization) 8. Assumptions of Linear Regression:    - Linearity    - Independence of errors    - Homoscedasticity (constant variance)    - No multicollinearity 9. Regularization in Linear Models:    - Adds a penalty term to the loss function to prevent overfitting by shrinking coefficients. 10. Classification vs Regression:     - Classification: Predicts a categorical outcome (e.g., class labels).     - Regression: Predicts a continuous numerical outcome (e.g., house price). 11. Dimensionality Reduction Algorithms:     - Principal Component Analysis (PCA)     - t-Distributed Stochastic Neighbor Embedding (t-SNE) 12. Decision Tree:     - Tree-like model where internal nodes represent features, branches represent decisions, and leaf nodes represent outcomes. 13. Ensemble Methods:     - Combine predictions from multiple models to improve accuracy (e.g., Random Forest, Gradient Boosting). 14. Handling Missing or Corrupted Data:     - Imputation (e.g., mean substitution)     - Removing rows or columns with missing data     - Using algorithms robust to missing values 15. Kernels in Support Vector Machines (SVM):     - Linear kernel     - Polynomial kernel     - Radial Basis Function (RBF) kernel Best Data Science & Machine Learning Resources: https://topmate.io/coding/914624 Like for more 😄

Teaching with AI - 2024.pdf5.86 MB